<?xml version="1.0" encoding="UTF-8"?><rss xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:content="http://purl.org/rss/1.0/modules/content/" xmlns:atom="http://www.w3.org/2005/Atom" version="2.0"><channel><title><![CDATA[2q.ai]]></title><description><![CDATA[Accelerating AI Solutions for Tomorrow]]></description><link>https://www.2q.ai/blog</link><generator>RSS for Node</generator><lastBuildDate>Sat, 18 Apr 2026 11:48:43 GMT</lastBuildDate><atom:link href="https://www.2q.ai/blog-feed.xml" rel="self" type="application/rss+xml"/><item><title><![CDATA[The Hybrid Gate: Solving the AI Self-Grading Problem]]></title><description><![CDATA[We recently hit a hard boundary in multi-agent architecture: Goodhart's Law. In the context of LLM swarms, this manifests as the 'Self-Grading Problem.' During our autonomous research loops, we observed what appeared to be a recurring failure mode. Agent A (the Generator) would draft an email containing a broken URL. Agent B (the Critic) would review the output against a rubric. Over multiple iterations, the two models appeared to converge on acceptance of broken links that were structurally...]]></description><link>https://www.2q.ai/post/the-hybrid-gate-solving-the-ai-self-grading-problem</link><guid isPermaLink="false">69cc1142c6f6bb14a90d989a</guid><pubDate>Tue, 31 Mar 2026 18:25:05 GMT</pubDate><enclosure url="https://static.wixstatic.com/media/11062b_43b3aa4a08f345a9866c6a5e158ceb45~mv2.jpg/v1/fit/w_1000,h_1000,al_c,q_80/file.png" length="0" type="image/png"/><dc:creator>Sunondo</dc:creator></item><item><title><![CDATA[Intelligence at the Tactical Edge: Decoupling the LLM]]></title><description><![CDATA[How do you run AI in a contested environment when cloud access is degraded or jammed? You decouple the reasoning engine from the execution layer. At 2Q.ai , we recently engineered a proof-of-concept Edge Swarm Architecture  specifically for Counter-UAS scenarios to test bypassing monolithic cloud dependencies: 1. Local SLMs on ARM:  We configured lightweight reasoning engines (like Phi-3 and Qwen) to run natively on NVIDIA Jetson and Raspberry Pi hardware. This removes the hard dependency on...]]></description><link>https://www.2q.ai/post/intelligence-at-the-tactical-edge-decoupling-the-llm</link><guid isPermaLink="false">69cc13922da60c15711fd91d</guid><pubDate>Thu, 26 Mar 2026 04:00:00 GMT</pubDate><enclosure url="https://static.wixstatic.com/media/11062b_d28a174f514e4b4e82f460ac0286d5b6~mv2.jpg/v1/fit/w_1000,h_1000,al_c,q_80/file.png" length="0" type="image/png"/><dc:creator>Heather</dc:creator></item><item><title><![CDATA[Advanced Topic: Context Aware vs. Traditional AI]]></title><description><![CDATA[Hopefully you read our primer on this topic: What is Contextual Awareness .  Now let's talk about how Context-Aware AI is different from traditional AI. The key distinction lies in flexibility and understanding. Traditional AI systems often operate like strict rule-followers or single-task experts – they take input and give output without considering any surrounding factors. They might be very good at one thing, but if the situation changes or the input is vague, they stumble. Context-Aware...]]></description><link>https://www.2q.ai/post/advanced-topic-context-aware-vs-traditional-ai</link><guid isPermaLink="false">69bc9bbc06e9acd4d41d3b51</guid><pubDate>Tue, 17 Mar 2026 01:04:43 GMT</pubDate><enclosure url="https://static.wixstatic.com/media/11062b_d7d4febd7fd84435ac20ebeec233c267~mv2.jpg/v1/fit/w_1000,h_1000,al_c,q_80/file.png" length="0" type="image/png"/><dc:creator>Gracie</dc:creator></item><item><title><![CDATA[Understanding Context-Aware AI]]></title><description><![CDATA[Context-Aware AI is a form of artificial intelligence that understands the situation around it. Instead of reacting blindly to a single piece of input, it looks at the bigger picture – the context – to make smarter decisions. In simple terms, it’s like having an AI that “remembers” and takes into account relevant background information when solving a problem or answering a question . For example, if you ask a context-aware AI assistant, “Do I need an umbrella today?”, it will check where you...]]></description><link>https://www.2q.ai/post/understanding-context-aware-ai</link><guid isPermaLink="false">69bc9a1306e9acd4d41d3725</guid><pubDate>Tue, 10 Mar 2026 00:57:39 GMT</pubDate><enclosure url="https://static.wixstatic.com/media/11062b_66f39976dd214e5288c0fb79f85c9bb8~mv2.jpg/v1/fit/w_1000,h_1000,al_c,q_80/file.png" length="0" type="image/png"/><dc:creator>Gracie</dc:creator></item><item><title><![CDATA[Agentic Frameworks]]></title><description><![CDATA[Imagine you have a team of specialists—each member excels at a specific task. One is great at researching, another at crunching numbers, and another at creative problem-solving. When you assign a project, they work independently on their part, then share what they’ve learned, building a bigger, better solution together. That’s the core idea behind agentic frameworks. Instead of relying on one large, monolithic program to do everything, you create a set of smaller, focused "agents." Each agent...]]></description><link>https://www.2q.ai/post/agentic-frameworks</link><guid isPermaLink="false">69bc93f3bec251fc0ba98818</guid><pubDate>Tue, 03 Mar 2026 01:32:20 GMT</pubDate><enclosure url="https://static.wixstatic.com/media/f808ef49161b483baeb323114519dde8.jpg/v1/fit/w_1000,h_1000,al_c,q_80/file.png" length="0" type="image/png"/><dc:creator>Gracie</dc:creator></item></channel></rss>